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Papers/PointAD: Comprehending 3D Anomalies from Points and Pixels...

PointAD: Comprehending 3D Anomalies from Points and Pixels for Zero-shot 3D Anomaly Detection

Qihang Zhou, Jiangtao Yan, Shibo He, Wenchao Meng, Jiming Chen

2024-10-01Representation Learning3D Anomaly DetectionAnomaly Detection
PaperPDFCode(official)

Abstract

Zero-shot (ZS) 3D anomaly detection is a crucial yet unexplored field that addresses scenarios where target 3D training samples are unavailable due to practical concerns like privacy protection. This paper introduces PointAD, a novel approach that transfers the strong generalization capabilities of CLIP for recognizing 3D anomalies on unseen objects. PointAD provides a unified framework to comprehend 3D anomalies from both points and pixels. In this framework, PointAD renders 3D anomalies into multiple 2D renderings and projects them back into 3D space. To capture the generic anomaly semantics into PointAD, we propose hybrid representation learning that optimizes the learnable text prompts from 3D and 2D through auxiliary point clouds. The collaboration optimization between point and pixel representations jointly facilitates our model to grasp underlying 3D anomaly patterns, contributing to detecting and segmenting anomalies of unseen diverse 3D objects. Through the alignment of 3D and 2D space, our model can directly integrate RGB information, further enhancing the understanding of 3D anomalies in a plug-and-play manner. Extensive experiments show the superiority of PointAD in ZS 3D anomaly detection across diverse unseen objects.

Results

TaskDatasetMetricValueModel
Anomaly DetectionReal 3D-ADMean Performance of P. and O. 0.7375PointAD
Anomaly DetectionReal 3D-ADObject AUROC0.759PointAD
Anomaly DetectionReal 3D-ADPoint AUROC0.716PointAD
3D Anomaly DetectionReal 3D-ADMean Performance of P. and O. 0.7375PointAD
3D Anomaly DetectionReal 3D-ADObject AUROC0.759PointAD
3D Anomaly DetectionReal 3D-ADPoint AUROC0.716PointAD

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